
#! 数据预处理
"""

    预处理对图像做一些随机的变化，产生相似但又不完全相同的样本。
    主要作用是扩大训练数据集，抑制过拟合，提升模型的泛化能力

  1. 随机改变亮暗、对比度、颜色
  2. 随机填充
  3. 随机裁剪
  4. 随机缩放
  5. 随机翻转
  6. 随机打乱真实框排列顺序
  7. 图像增广方法汇总
"""

import numpy as np
import cv2
from PIL import Image, ImageEnhance
import random

#> 1.随机改变亮暗、对比度和颜色等
#@ img :一张图片的数据
#@ 返回值: 一张被随机修正后的图片数据
def random_distort(img):
    # 随机改变亮度
    def random_brightness(img, lower=0.5, upper=1.5):
        e = np.random.uniform(lower, upper)
        return ImageEnhance.Brightness(img).enhance(e)

    # 随机改变对比度
    def random_contrast(img, lower=0.5, upper=1.5):
        e = np.random.uniform(lower, upper)
        return ImageEnhance.Contrast(img).enhance(e)

    # 随机改变颜色
    def random_color(img, lower=0.5, upper=1.5):
        e = np.random.uniform(lower, upper)
        return ImageEnhance.Color(img).enhance(e)
    # 将随机的三个函数放入数组中
    ops = [random_brightness, random_contrast, random_color]
    # 随机改变数组中的顺序，改变ops原来的值
    np.random.shuffle(ops)
    # 将图片数据 array 转为图片 image
    img = Image.fromarray(img)
    # 一次使用随机的函数对图片做3次修改
    img = ops[0](img)
    img = ops[1](img)
    img = ops[2](img)
    # 将图片 image 再次转为 图片数据 array
    img = np.asarray(img)

    return img


#> 2.随机填充
#@ img 一张图片数据
#@ gtboxes 真实框坐标
#@ max_ratio 最大填充比例
#@ keep_ratio 是否保持比例
#@ thresh 阈值小于0.5或大于1.0 直接返回
#@ 返回值:
def random_expand(img,
                  gtboxes,
                  max_ratio=4.,
                  fill=None,
                  keep_ratio=True,
                  thresh=0.5):
    if random.random() > thresh:
        return img, gtboxes

    if max_ratio < 1.0:
        return img, gtboxes

    h, w, c = img.shape
    ratio_x = random.uniform(1, max_ratio)
    if keep_ratio:
        ratio_y = ratio_x
    else:
        ratio_y = random.uniform(1, max_ratio)
    oh = int(h * ratio_y)
    ow = int(w * ratio_x)
    off_x = random.randint(0, ow - w)
    off_y = random.randint(0, oh - h)

    out_img = np.zeros((oh, ow, c))
    if fill and len(fill) == c:
        for i in range(c):
            out_img[:, :, i] = fill[i] * 255.0

    out_img[off_y:off_y + h, off_x:off_x + w, :] = img
    gtboxes[:, 0] = ((gtboxes[:, 0] * w) + off_x) / float(ow)
    gtboxes[:, 1] = ((gtboxes[:, 1] * h) + off_y) / float(oh)
    gtboxes[:, 2] = gtboxes[:, 2] / ratio_x
    gtboxes[:, 3] = gtboxes[:, 3] / ratio_y

    return out_img.astype('uint8'), gtboxes


#> 3.随机裁剪

# 随机裁剪前置函数1 
def multi_box_iou_xywh(box1, box2):
    """
    此方法只能处理两种情况：
        1，box1和box2具有相同的形状，box1.shape == box2.shape
        2，box1或box2仅包含一个框，len（box1）== 1或len（box2）== 1
        如果box1和box2的形状不匹配，并且它们都包含多个box，那将是错误的。
    """
    assert box1.shape[-1] == 4, "Box1形状[-1]应该为4."
    assert box2.shape[-1] == 4, "Box2形状[-1]应该为4."

    b1_x1, b1_x2 = box1[:, 0] - box1[:, 2] / 2, box1[:, 0] + box1[:, 2] / 2
    b1_y1, b1_y2 = box1[:, 1] - box1[:, 3] / 2, box1[:, 1] + box1[:, 3] / 2
    b2_x1, b2_x2 = box2[:, 0] - box2[:, 2] / 2, box2[:, 0] + box2[:, 2] / 2
    b2_y1, b2_y2 = box2[:, 1] - box2[:, 3] / 2, box2[:, 1] + box2[:, 3] / 2

    inter_x1 = np.maximum(b1_x1, b2_x1)
    inter_x2 = np.minimum(b1_x2, b2_x2)
    inter_y1 = np.maximum(b1_y1, b2_y1)
    inter_y2 = np.minimum(b1_y2, b2_y2)
    inter_w = inter_x2 - inter_x1
    inter_h = inter_y2 - inter_y1
    inter_w = np.clip(inter_w, a_min=0., a_max=None)
    inter_h = np.clip(inter_h, a_min=0., a_max=None)

    inter_area = inter_w * inter_h
    b1_area = (b1_x2 - b1_x1) * (b1_y2 - b1_y1)
    b2_area = (b2_x2 - b2_x1) * (b2_y2 - b2_y1)

    return inter_area / (b1_area + b2_area - inter_area)

#> 随机裁剪前置函数2  裁剪盒子
def box_crop(boxes, labels, crop, img_shape):
    x, y, w, h = map(float, crop)
    im_w, im_h = map(float, img_shape)

    boxes = boxes.copy()
    boxes[:, 0], boxes[:, 2] = (boxes[:, 0] - boxes[:, 2] / 2) * im_w, (
        boxes[:, 0] + boxes[:, 2] / 2) * im_w
    boxes[:, 1], boxes[:, 3] = (boxes[:, 1] - boxes[:, 3] / 2) * im_h, (
        boxes[:, 1] + boxes[:, 3] / 2) * im_h

    crop_box = np.array([x, y, x + w, y + h])
    centers = (boxes[:, :2] + boxes[:, 2:]) / 2.0
    mask = np.logical_and(crop_box[:2] <= centers,
                          centers <= crop_box[2:]).all(axis=1)

    boxes[:, :2] = np.maximum(boxes[:, :2], crop_box[:2])
    boxes[:, 2:] = np.minimum(boxes[:, 2:], crop_box[2:])
    boxes[:, :2] -= crop_box[:2]
    boxes[:, 2:] -= crop_box[:2]

    mask = np.logical_and(mask, (boxes[:, :2] < boxes[:, 2:]).all(axis=1))
    boxes = boxes * np.expand_dims(mask.astype('float32'), axis=1)
    labels = labels * mask.astype('float32')
    boxes[:,
          0], boxes[:,
                    2] = (boxes[:, 0] + boxes[:, 2]) / 2 / w, (boxes[:, 2] -
                                                               boxes[:, 0]) / w
    boxes[:,
          1], boxes[:,
                    3] = (boxes[:, 1] + boxes[:, 3]) / 2 / h, (boxes[:, 3] -
                                                               boxes[:, 1]) / h

    return boxes, labels, mask.sum()

#> 真·随机裁剪
def random_crop(img,
                boxes,
                labels,
                scales=[0.3, 1.0],
                max_ratio=2.0,
                constraints=None,
                max_trial=50):
    if len(boxes) == 0:
        return img, boxes

    if not constraints:
        constraints = [(0.1, 1.0), (0.3, 1.0), (0.5, 1.0), (0.7, 1.0),
                       (0.9, 1.0), (0.0, 1.0)]

    img = Image.fromarray(img)
    w, h = img.size
    crops = [(0, 0, w, h)]
    for min_iou, max_iou in constraints:
        for _ in range(max_trial):
            scale = random.uniform(scales[0], scales[1])
            aspect_ratio = random.uniform(max(1 / max_ratio, scale * scale), \
                                          min(max_ratio, 1 / scale / scale))
            crop_h = int(h * scale / np.sqrt(aspect_ratio))
            crop_w = int(w * scale * np.sqrt(aspect_ratio))
            crop_x = random.randrange(w - crop_w)
            crop_y = random.randrange(h - crop_h)
            crop_box = np.array([[(crop_x + crop_w / 2.0) / w,
                                  (crop_y + crop_h / 2.0) / h,
                                  crop_w / float(w), crop_h / float(h)]])

            iou = multi_box_iou_xywh(crop_box, boxes)
            if min_iou <= iou.min() and max_iou >= iou.max():
                crops.append((crop_x, crop_y, crop_w, crop_h))
                break

    while crops:
        crop = crops.pop(np.random.randint(0, len(crops)))
        crop_boxes, crop_labels, box_num = box_crop(boxes, labels, crop,
                                                    (w, h))
        if box_num < 1:
            continue
        img = img.crop((crop[0], crop[1], crop[0] + crop[2],
                        crop[1] + crop[3])).resize(img.size, Image.LANCZOS)
        img = np.asarray(img)
        return img, crop_boxes, crop_labels
    img = np.asarray(img)
    return img, boxes, labels


#> 4.随机缩放
def random_interp(img, size, interp=None):
    interp_method = [
        cv2.INTER_NEAREST,
        cv2.INTER_LINEAR,
        cv2.INTER_AREA,
        cv2.INTER_CUBIC,
        cv2.INTER_LANCZOS4,
    ]
    if not interp or interp not in interp_method:
        interp = interp_method[random.randint(0, len(interp_method) - 1)]
    h, w, _ = img.shape
    im_scale_x = size / float(w)
    im_scale_y = size / float(h)
    img = cv2.resize(img,
                     None,
                     None,
                     fx=im_scale_x,
                     fy=im_scale_y,
                     interpolation=interp)
    return img


#> 5.随机翻转
def random_flip(img, gtboxes, thresh=0.5):
    if random.random() > thresh:
        img = img[:, ::-1, :]
        gtboxes[:, 0] = 1.0 - gtboxes[:, 0]
    return img, gtboxes


#> 6.随机打乱真实框排列顺序
def shuffle_gtbox(gtbox, gtlabel):
    gt = np.concatenate([gtbox, gtlabel[:, np.newaxis]], axis=1)
    idx = np.arange(gt.shape[0])
    np.random.shuffle(idx)
    gt = gt[idx, :]
    return gt[:, :4], gt[:, 4]


#> 7.图像增广方法汇总
def image_augment(img, gtboxes, gtlabels, size, means=None):
    # 随机改变亮暗、对比度和颜色等
    img = random_distort(img)
    # 随机填充
    img, gtboxes = random_expand(img, gtboxes, fill=means)
    # 随机裁剪
    img, gtboxes, gtlabels, = random_crop(img, gtboxes, gtlabels)
    # 随机缩放
    img = random_interp(img, size)
    # 随机翻转
    img, gtboxes = random_flip(img, gtboxes)
    # 随机打乱真实框排列顺序
    gtboxes, gtlabels = shuffle_gtbox(gtboxes, gtlabels)

    return img.astype('float32'), gtboxes.astype('float32'), gtlabels.astype(
        'int32')

